Credit Risk Evaluation Using Decision Support System
Date Issued
2024
Author(s)
Taranath, N L
DOI
https://doi.org/10.1109/ICAIT61638.2024.10690699
Abstract
In order to determine the possibility that a borrower will not fulfil their financial commitments, financial institutions must evaluate credit risk. Making educated judgments about loan approvals and credit extensions is made easier with the help of the credit risk assessment. Decision Support Systems (DSS) are computer-based solutions that help businesses with difficult decision-making processes by supplying pertinent data and analytical models. DSS is essential for improving the precision and effectiveness of decision-making processes in the context of credit risk evaluation. This paper investigates the use of DSS in credit risk assessment and how it affects the decision-making process. in particular, it looks at data integration, risk assessment models, credit scoring, decision assistance, and portfolio management as important elements of a Credit Risk Evaluation DSS. A complete picture of the borrower's financial situation is possible thanks to the integration of several data sources, including financial statements and credit reports. in order to evaluate this data and find patterns or signs of credit risk, DSS uses sophisticated statistical and machine learning algorithms, which results in more precise risk assessments. Through the use of credit scoring, lenders may divide applicants into several risk groups and make well-informed judgments on loan approvals and interest rates. © 2024 IEEE.
